Abstract
In this paper we present an agent-based model of a human population, designed to illustrate the potential synergies between demography and agent-based social simulation. In the modelling process, we take advantage of the perspectives of both disciplines: demography being more focused on matching statistical models to empirical data, and social simulation on explanations of social mechanisms underlying the observed phenomena. This work is based on earlier attempts to introduce agent-based modelling to demography, but extends them into a multi-level and multi-state framework. We illustrate our approach with a proof-of-concept model of partnership formation and changing health status over the life course. In addition to the agent-based component, the model includes empirical elements based on demographic data for the United Kingdom. As such, the model allows analysis of the demographic dynamics at a variety of levels, from the individual, through the household, to the whole population. We bolster this analysis further by using statistical emulation techniques, which allow for in-depth investigation of the interaction of model parameters and of the resulting output uncertainty. We argue that the approach although not fully predictive per se has four important advantages. first, the model is capable of studying the linked lives of simulated individuals in a variety of scenarios. second, the simulations can be readily embedded in the relevant social or physical spaces. third, the approach allows for overcoming some data-related limitations, augmenting the available statistical information with assumptions on behavioural rules. fourth, statistical emulators enable exploration of the parameter space of the underlying agent-based models.
Highlights
1.1 The main aim of this paper is to bring together methodological perspectives from two scientific disciplines: demography and social simulation, and to illustrate it using a proof-of-concept model of partnership formation, population change and health
We present some of the results for the simulation year 2011, which we were able to compare with the most recent data provided by the United Kingdom (UK) Office for National Statistics
5.1 The model presented in this paper represents a substantive step toward the integration of statistical demographic methods with agent-based modelling
Summary
1.1 The main aim of this paper is to bring together methodological perspectives from two scientific disciplines: demography and social simulation, and to illustrate it using a proof-of-concept model of partnership formation, population change and health. This paper aims to contribute to filling this gap, by trying to reconcile the approaches of both disciplines - statistical demography and social simulation. 1.2 Our initial motivation in carrying out this work has been our involvement in the Care Life Cycle project (CLC, http://www.southampton.ac.uk/clc). The research team spans a wide range of disciplines, including agent-based modelling, demography, gerontology, operations research, and social statistics, and includes a variety of points of view: from micro-level to macro-level, and from empirical to theoretical. We attempt to bring some of these perspectives closer together
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